In the last few years, the occurrence and abundance of tree-related microhabitats and habitat trees have gained great attention across Europe as indicators of forest biodiversity. Nevertheless, observing microhabitats in the field requires time and well-trained sta. For this reason, new ecient semiautomatic systems for their identification and mapping on a large scale are necessary. This study aims at predicting microhabitats in a mixed and multi-layered Mediterranean forest using Airborne Laser Scanning data through the implementation of a Machine Learning algorithm. The study focuses on the identification of LiDAR metrics useful for detecting microhabitats according to the recent hierarchical classification system for Tree-related Microhabitats, from single microhabitats to the habitat trees. The results demonstrate that Airborne Laser Scanning point clouds support the prediction of microhabitat abundance. Better prediction capabilities were obtained at a higher hierarchical level and for some of the single microhabitats, such as epiphytic bryophytes, root buttress cavities, and branch holes. Metrics concerned with tree height distribution and crown density are the most important predictors of microhabitats in a multi-layered forest.

Machine learning algorithms to predict tree-related microhabitats using airborne laser scanning / Santopuoli, Giovanni; Di Febbraro, Mirko; Maesano, Mauro; Balsi, Marco; Marchetti, Marco; Lasserre, Bruno. - In: REMOTE SENSING. - ISSN 2072-4292. - 12:13(2020), pp. 1-18. [10.3390/rs12132142]

Machine learning algorithms to predict tree-related microhabitats using airborne laser scanning

Balsi, Marco;
2020

Abstract

In the last few years, the occurrence and abundance of tree-related microhabitats and habitat trees have gained great attention across Europe as indicators of forest biodiversity. Nevertheless, observing microhabitats in the field requires time and well-trained sta. For this reason, new ecient semiautomatic systems for their identification and mapping on a large scale are necessary. This study aims at predicting microhabitats in a mixed and multi-layered Mediterranean forest using Airborne Laser Scanning data through the implementation of a Machine Learning algorithm. The study focuses on the identification of LiDAR metrics useful for detecting microhabitats according to the recent hierarchical classification system for Tree-related Microhabitats, from single microhabitats to the habitat trees. The results demonstrate that Airborne Laser Scanning point clouds support the prediction of microhabitat abundance. Better prediction capabilities were obtained at a higher hierarchical level and for some of the single microhabitats, such as epiphytic bryophytes, root buttress cavities, and branch holes. Metrics concerned with tree height distribution and crown density are the most important predictors of microhabitats in a multi-layered forest.
2020
Habitat trees; forest biodiversity; LiDAR; tre-related microhabitat; sustainable forest management
01 Pubblicazione su rivista::01a Articolo in rivista
Machine learning algorithms to predict tree-related microhabitats using airborne laser scanning / Santopuoli, Giovanni; Di Febbraro, Mirko; Maesano, Mauro; Balsi, Marco; Marchetti, Marco; Lasserre, Bruno. - In: REMOTE SENSING. - ISSN 2072-4292. - 12:13(2020), pp. 1-18. [10.3390/rs12132142]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1427638
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